多参数融合优化的深度神经网络在高校专业课思想政治建设中的应用

Rui Ma
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引用次数: 0

摘要

课程思想政治是高校实现“育德育人”目标的内在要求,是实现三轮育人的有益探索。高校专业课的思想政治建设不仅要教给学生知识和技能,还要帮助学生形成正确的价值观。针对高校思想政治课建设问题,提出了一种基于多参数融合的深度神经网络逐步优化设计方法。首先,通过对样本和类别的分析,确定无隐藏层的初始神经网络模型,然后在初始神经网络的基础上逐步添加隐藏层,构建多参数融合优化的深度神经网络。基于TensorFlow框架,以手写体数字识别为例,逐步设计深度神经网络模型。在整个实验过程中,不断调整网络结构、激活函数、损失函数、优化器、学习率和样本批大小,最后设计了一个多参数设计。融合优化的深度神经网络模型具有较高的精度,为神经网络的构建提供了有效的思路。随着学习率的增加,神经网络的性能逐渐提高。在训练集和测试集中,学习率为0.3时准确率几乎最高,迭代次数为30时准确率分别为93.30%和92.58%,说明多参数融合优化后的神经网络可以很好地应用于高校专业课思想政治建设中,具有较强的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of deep NN optimized by multi-parameter fusion in ideological and political construction of professional courses in colleges and universities
Curriculum ideology and politics is an inherent requirement to achieve the goal of "cultivating morality and cultivating people" in colleges and universities, and it is a beneficial exploration to realize the three-round education. The ideological and political construction of professional courses in colleges and universities not only teaches students knowledge and skills, but also helps students form correct values. Aiming at how to build ideological and political courses in colleges and universities, a design method based on multi-parameter fusion to gradually optimize deep NN is proposed. Firstly, the initial NN model without hidden layer is determined by analyzing the samples and categories, and then the hidden layer is gradually added on the basis of the initial NN to construct a deep NN with multi-parameter fusion optimization. Based on the TensorFlow framework, taking handwritten digit recognition as an example, a deep NN model is gradually designed. During the whole experiment, the network structure, activation function, loss function, optimizer, learning rate and sample batch size are continuously adjusted, and finally a multi-parameter design is designed. The fusion optimized deep NN model with high accuracy provides an effective idea for building a NN. As the learning rate increases, the performance of the NN gradually improves. In the training set and test set, the accuracy rate is almost the highest when the learning rate is 0.3, and the accuracy rate is 93.30% and 92.58% respectively when the number of iterations is 30, which shows that The NN optimized by multi-parameter fusion can be well applied to the ideological and political construction of professional courses in colleges and universities, and has strong application prospects.
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